Forecasting of Covid-19 cases based on prediction using artificial neural network curve fitting technique

Authors

  • B. Datta Department of Electrical Engineering, National Institute of Technology, Yupia, India
  • P.D. Singh Department of Electrical Engineering, North Eastern Regional Institute of Science and Technology, Itanagar, India
  • S.K. Tamang Department of Mechanical Engineering, North Eastern Regional Institute of Science and Technology, Itanagar, India
Abstract:

Artificial neural network is considered one of the most efficient methods in processing huge data sets that can be analyzed computationally to reveal patterns, trends, prediction, forecasting etc. It has a great prospective in engineering as well as in medical applications. The present work employs artificial neural network-based curve fitting techniques in prediction and forecasting of the Covid-19 number of rising cases and death cases in India, USA, France, and UK, considering the progressive trends of China and South Korea. In this paper, three cases are considered to analyze the outbreak of Covid-19 pandemic viz., (i) forecasting as per the present trend of rising cases of different countries (ii) forecasting of one week following up with the improvement trends as per China and South Korea, and (iii) forecasting if followed up the progressive trends as per China and South Korea before a week. The results have shown that ANN can efficiently forecast the future cases of COVID 19 outbreak of any country. The study shows that the confirmed cases of India, USA, France and UK could be about 50,000 to 1,60,000, 12,00,000 to 17,00,000, 1,40,000 to 1,50,000 and 2,40,000 to 2,50,000 respectively and may take about 2 to 10 months based on progressive trends of China and South Korea.  Similarly, the death toll for these countries just before controlling could be about 1600 to 4000 for India, 1,35,000 to 1,00,000 for USA, 40,000 to 55,000 for France, 35,000 to 47,000 for UK during the same period of study.

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Journal title

volume 6  issue Special Issue (Covid-19)

pages  53- 64

publication date 2020-08-01

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